Title:
Machine Learning Methods for Decision Making Inference in Healthcare

dc.contributor.advisor Serban, Nicoleta
dc.contributor.advisor Yang, Shihao
dc.contributor.author Ma, Simin
dc.contributor.committeeMember Xie, Yao
dc.contributor.committeeMember Keskinocak, Pinar
dc.contributor.committeeMember Ning, Shaoyang
dc.contributor.department Industrial and Systems Engineering
dc.date.accessioned 2023-05-18T17:49:38Z
dc.date.available 2023-05-18T17:49:38Z
dc.date.created 2023-05
dc.date.issued 2023-04-19
dc.date.submitted May 2023
dc.date.updated 2023-05-18T17:49:38Z
dc.description.abstract Machine learning algorithms are widely regarded as disruptive innovations. They have demonstrated superior performance in many complex domains, such as computer visions, signal processing and natural language processing. One area, in particular, in which machine learning has potential widespread societal impacts is the healthcare delivery and policy making. Statistical and machine learning techniques, combined with big data generated from healthcare organizations, have the potential to bring changes to healthcare delivery. Despite major advances in the development of machine learning methodologies in the mainstream healthcare literature, several challenges remain. This thesis addresses two emerging challenges in the context of real-world healthcare applications, with a focus of developing novel machine learning methodologies. The first challenge is that big data does not guarantee reliable and valid results, without rigorous methodological support in data analysis. This thesis proposes novel and rigorous methods using large scale datasets in three application areas. In Chapter 2, I will present a framework that optimally extracts public online search information such as Google for accurate U.S. national and state-level COVID-19 and Influenza-like Illnesses (ILI) predictions. In Chapter 3, I will investigate two treatment-related decision-making problems using electronic healthcare records (EHRs) databases. In Chapter 3 section 1, I will introduce a unified propensity score method for causal inference analysis using EHRs. In Chapter 3 section 2, I will propose a reinforcement learning approach for optimal personalized treatment recommendations in ICU settings. The second challenge is that many traditional machine learning methods are not computationally efficient or feasible when applying them off-the-shelf in complex big data settings. In Chapter 4, I will present a computationally efficient parameter learning method in Hidden Markov Models (HMM), with application in sports-related concussion. In Chapter 5, I extend a previously developed dynamic systems inference method (Manifold Approximated Gaussian Process Inference) to situations with completely unknown systems dynamics, with applications in system biology and other scientific areas.
dc.description.degree Ph.D.
dc.format.mimetype application/pdf
dc.identifier.uri https://hdl.handle.net/1853/71985
dc.language.iso en_US
dc.publisher Georgia Institute of Technology
dc.subject Machine Learning
dc.subject Deep Learning
dc.subject Healthcare
dc.subject Health Analytics
dc.subject Infectious Disease Prediction
dc.subject Online Search Behavior
dc.subject Spatial Temporal Modeling
dc.subject Causal Inference
dc.subject Propensity Score
dc.subject Electronic Healthcare Records
dc.subject Reinforcement Learning
dc.subject Precision Medicine
dc.subject Intensive Care Unit
dc.subject Concussion
dc.subject Hidden Markov Models
dc.subject Gaussian Process
dc.subject Ordinary Differential Equations
dc.title Machine Learning Methods for Decision Making Inference in Healthcare
dc.type Text
dc.type.genre Dissertation
dspace.entity.type Publication
local.contributor.advisor Serban, Nicoleta
local.contributor.advisor Yang, Shihao
local.contributor.corporatename College of Engineering
local.contributor.corporatename H. Milton Stewart School of Industrial and Systems Engineering
relation.isAdvisorOfPublication 63115986-db70-4c06-87c4-dab394286f67
relation.isAdvisorOfPublication 12dd26b5-bad1-47fe-ab1c-4de511fb0510
relation.isOrgUnitOfPublication 7c022d60-21d5-497c-b552-95e489a06569
relation.isOrgUnitOfPublication 29ad75f0-242d-49a7-9b3d-0ac88893323c
thesis.degree.level Doctoral
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